Skip to content

feast-dev/feast

Folders and files

NameName
Last commit message
Last commit date

Latest commit

b2fc950 · Apr 21, 2021
Apr 15, 2021
Feb 11, 2021
Apr 19, 2021
Mar 3, 2021
Apr 19, 2021
Apr 10, 2021
Apr 20, 2021
Jan 8, 2021
Oct 5, 2019
Mar 28, 2021
May 2, 2020
Mar 21, 2021
Mar 28, 2021
Mar 28, 2021
Apr 21, 2021
Apr 2, 2021
Dec 10, 2018
Mar 28, 2021
Apr 15, 2021
Apr 15, 2021
Nov 26, 2020
Nov 26, 2020

Repository files navigation


unit-tests integration-tests linter Docs Latest Python API License GitHub Release

Overview

Feast is an open source feature store for machine learning. Feast is the fastest path to productionizing analytic data for model training and online inference.

Please see our documentation for more information about the project.

Architecture

The above architecture is the minimal Feast deployment. Want to run the full Feast on Kubernetes? Click here.

Getting Started

1. Install Feast

pip install feast

2. Create a feature repository

feast init my_feature_repo
cd my_feature_repo

3. Register your feature definitions and set up your feature store

feast apply

4. Build a training dataset

from feast import FeatureStore
import pandas as pd
from datetime import datetime

entity_df = pd.DataFrame.from_dict({
    "driver_id": [1001, 1002, 1003, 1004],
    "event_timestamp": [
        datetime(2021, 4, 12, 10, 59, 42),
        datetime(2021, 4, 12, 8,  12, 10),
        datetime(2021, 4, 12, 16, 40, 26),
        datetime(2021, 4, 12, 15, 1 , 12)
    ]
})

store = FeatureStore(repo_path=".")

training_df = store.get_historical_features(
    entity_df=entity_df, 
    feature_refs = [
        'driver_hourly_stats:conv_rate',
        'driver_hourly_stats:acc_rate',
        'driver_hourly_stats:avg_daily_trips'
    ],
).to_df()

print(training_df.head())

# Train model
# model = ml.fit(training_df)
      event_timestamp  driver_id  driver_hourly_stats__conv_rate  driver_hourly_stats__acc_rate
  2021-04-12 08:12:10       1002                        0.497279                       0.357702
  2021-04-12 10:59:42       1001                        0.979747                       0.008166
  2021-04-12 15:01:12       1004                        0.151432                       0.551748
  2021-04-12 16:40:26       1003                        0.951506                       0.753572

5. Load feature values into your online store

CURRENT_TIME=$(date -u +"%Y-%m-%dT%H:%M:%S")
feast materialize-incremental $CURRENT_TIME
Materializing feature view driver_hourly_stats from 2021-04-14 to 2021-04-15 done!

6. Read online features at low latency

from pprint import pprint
from feast import FeatureStore

store = FeatureStore(repo_path=".")

feature_vector = store.get_online_features(
    feature_refs=[
        'driver_hourly_stats:conv_rate',
        'driver_hourly_stats:acc_rate',
        'driver_hourly_stats:avg_daily_trips'
    ],
    entity_rows=[{"driver_id": 1001}]
).to_dict()

pprint(feature_vector)

# Make prediction
# model.predict(feature_vector)
{
    "driver_id": [1001],
    "driver_hourly_stats__conv_rate": [0.49274],
    "driver_hourly_stats__acc_rate": [0.92743],
    "driver_hourly_stats__avg_daily_trips": [72]
}

Important resources

Please refer to the official documentation at Documentation

Contributing

Feast is a community project and is still under active development. Please have a look at our contributing and development guides if you want to contribute to the project:

Contributors ✨

Thanks goes to these incredible people: